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Analysis of the Internal Representations Developed by Neural Networks for Structures Applied to QSAR Studies of Benzodiazepines

机译:神经网络为苯二氮卓类药物的QSAR研究开发的结构内部表示分析

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摘要

An application of recursive cascade correlation (CC) neural networks to quantitative structure-activity relationship (QSAR) studies is presented, with emphasis on the study of the internal representations developed by the neural networks. Recursive CC is a neural network model recently proposed for the processing of structured data. It allows the direct handling of chemical compounds as labeled ordered directed graphs, and constitutes a novel approach to QSAR. The adopted representation of molecular structure captures, in a quite general and flexible way, significant topological aspects and chemical functionalities for each specific class of molecules showing a particular chemical reactivity or biological activity. A class of 1,4-benzodiazepin-2-ones is analyzed by the proposed approach. It compares favorably versus the traditional QSAR treatment based on equations. To show the ability of the model in capturing most of the structural features that account for the biological activity, the internal representations developed by the networks are analyzed by principal component analysis. This analysis shows that the networks are able to discover relevant structural features just on the basis of the association between the molecular morphology and the target property (affinity).
机译:提出了递归级联相关(CC)神经网络在定量构效关系(QSAR)研究中的应用,重点研究了由神经网络开发的内部表示形式。递归CC是最近提出的用于处理结构化数据的神经网络模型。它可以按标记的有向有向图的形式直接处理化合物,并构成了一种新颖的QSAR方法。所采用的分子结构表示形式以非常通用和灵活的方式捕获了显示特定化学反应性或生物活性的每种特定分子类型的重要拓扑结构和化学功能。通过所提出的方法分析了一类1,4-苯并二氮杂-2-酮。与基于等式的传统QSAR处理相比,它具有优势。为了展示该模型捕获大部分解释生物活性的结构特征的能力,通过主成分分析对网络开发的内部表示进行了分析。该分析表明,仅基于分子形态与目标特性(亲和力)之间的关联,网络就能发现相关的结构特征。

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